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Diet-related greenhouse gas emissions and major food contributors among Japanese adults: comparison of different calculation methods

Published online by Cambridge University Press:  11 May 2020

Minami Sugimoto
Affiliation:
Department of Social and Preventive Epidemiology, Division of Health Sciences and Nursing, Graduate School of Medicine, University of Tokyo, Tokyo113-0033, Japan
Kentaro Murakami
Affiliation:
Department of Social and Preventive Epidemiology, School of Public Health, University of Tokyo, Tokyo113-0033, Japan
Keiko Asakura
Affiliation:
Department of Environmental and Occupational Health, School of Medicine, Toho University, Tokyo143-8540, Japan
Shizuko Masayasu
Affiliation:
Ikurien-Naka, Ibaraki311-0105, Japan
Satoshi Sasaki*
Affiliation:
Department of Social and Preventive Epidemiology, Division of Health Sciences and Nursing, Graduate School of Medicine, University of Tokyo, Tokyo113-0033, Japan Department of Social and Preventive Epidemiology, School of Public Health, University of Tokyo, Tokyo113-0033, Japan
*
*Corresponding author: Email stssasak@m.u-tokyo.ac.jp
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Abstract

Objective:

To develop a greenhouse gas emissions (GHGE) database for Japanese foods using three different approaches, compare the results of estimated diet-related GHGE and determine major food contributors among Japanese adults.

Design:

Cross-sectional. Three GHGE databases were developed: (1) a literature-based method including a literature review of life cycle assessment studies of Japanese foods and (2) production- and (3) consumption-based input–output tables (IOT)-applied methods using the Japanese IOT. All databases were linked to the Japanese food composition table and food consumption data. Diet-related GHGE was estimated based on each database and the 4-d dietary record data. Diet-related GHGE were compared in both total and food group level between the databases.

Setting:

Japan.

Participants:

392 healthy adults aged 20–69 years.

Results:

The mean diet-related GHGE significantly differed according to the calculation methods: 4145 g CO2-equivalent (CO2-eq)/d by the literature-based method, 4031 g CO2-eq/d by the production-based method and 7392 g CO2-eq/d by the consumption-based IOT-applied methods. It significantly differed in food group level as well. Spearman’s correlation coefficients between three methods ranged from 0·82 to 0·86. Irrespective of the methods, the top contributor to GHGE was meat (19·7–28·8 %) followed by fish and seafood (13·8–18·3 %).

Conclusions:

Although the identified major food contributors to GHGE were comparable between the three methods, the estimated GHGE values significantly differed by calculation methods. This finding suggested that caution must be taken when interpreting the estimated diet-related GHGE values obtained using the different calculation methods of GHGE.

Type
Research paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2020. Published by Cambridge University Press on behalf of The Nutrition Society

The food sector contributes about 20–30 % of total greenhouse gas emissions (GHGE)(Reference Garnett1,Reference Mcmichael, Powles and Butler2) , which is an important driver of climate change(Reference Moss, Edmonds and Hibbard3). In particular, livestock meat production makes a major contribution to GHGE(Reference Garnett4). Given that food production is driven by food consumption demands(Reference Macdiarmid5), there is an urgent need to change dietary choices and to make the food system more sustainable(Reference Garnett6Reference Tilman and Clark8).

A growing body of literature has reported the environmental impact of diet(Reference Hendrie, Ridoutt and Wiedmann9Reference Sjörs, Hedenus and Sjölander28), using the life cycle GHGE of each food item or food group obtained by life cycle assessment (LCA)(Reference Hellweg and Canals29). There are a variety of approaches to build the databases of food GHGE. Some researchers used the database with bottom-up approach(Reference Temme, Toxopeus and Kramer20,Reference van Dooren, Tyszler and Kramer23,Reference Kramer, Tyszler and van’t Veer24) , top-down approach(Reference Hendrie, Ridoutt and Wiedmann9,Reference Hitaj, Rehkamp and Canning30Reference Boehm, Ver Ploeg and Wilde32) or hybrid approach(Reference Pairotti, Cerutti and Martini10Reference Bertoluci, Masset and Gomy12), while others used a literature-based approach, that is, aggregation of the existing individual LCA studies collected with a literature review(Reference Green, Joy and Harris13Reference Werner, Flysjö and Tholstrup18,Reference Hyland, Henchion and McCarthy21) . The former three approaches could provide standardised data but need much time and resources for their development(Reference Roy, Nei and Orikasa33). On the contrary, the latter is a more feasible approach to obtain the data set, especially when there is no appropriate data set using the former approach specified to the target population. However, it has heterogeneity depending on each LCA studies, such as a variety of functional units and system boundaries(Reference Clune, Crossin and Verghese34). The fundamental methodological difference of these approaches should be considered when they are applied(Reference Feng, Chapagain and Suh35).

Due to difficulty in obtaining actual measurements, previous epidemiological studies have estimated diet-related GHGE by multiplying the GHGE per weight of food from the GHGE database described above with the intake of the food from the dietary data. This suggests that the estimation of diet-related GHGE could depend on the quality of both the GHGE database and dietary data. In terms of dietary data, previous studies have shown that diet-related GHGE could differ depending on the method used to assess dietary intake(Reference Sjörs, Raposo and Sjölander17,Reference Mertens, Kuijsten and Geleijnse36) . It was also shown that diet-related GHGE could be underestimated due to misreporting of dietary intake, especially underreporting of energy intake (EI)(Reference Murakami and Livingstone22), which is a common systematic error in self-reported dietary assessment(Reference Livingstone and Black37). However, studies examining how the GHGE database affects the result are limited.

There are a few independent previous studies which have estimated diet-related GHGE using similar dietary data and different GHGE databases. Diet-related GHGE among a national representative sample of French adults aged 18–79 years (energy under-reporters excluded) were relatively similar between a report using a literature-based approach by Vieux et al.(Reference Vieux, Darmon and Touazi15) and other reports using a hybrid approach(Reference Vieux, Soler and Touazi11,Reference Masset, Vieux and Verger38) . The estimation was also similar among participants aged 18–64 years (under-reporters included)(Reference Vieux, Perignon and Gazan19) using existing GHGE values reviewed by other researchers(Reference Hartikainen and Pulkkinen39). On the contrary, among the participants of the 2008–2009 UK National Diet and Nutrition Survey, the energy-adjusted diet-related GHGE (kg CO2-equivalent (CO2-eq)/7560 kJ), determined using the revised GHGE database which included a literature-based approach by Hoolohan et al.(Reference Hoolohan, Berners-Lee and Mckinstry-West25), was higher than the value reported in a previous study conducted by the same research group using a former literature-based database(Reference Berners-Lee, Hoolohan and Cammack40). The energy misreporting-adjusted mean value of the 2008–2014 National Diet and Nutrition Survey participants aged ≥19 years(Reference Murakami and Livingstone22) determined using another GHGE database including a literature-based approach(Reference Green, Milner and Dangour26) was between those of the previous two reports, while the non-adjusted mean was 2–3 kg CO2-eq/d lower than the above-mentioned values. Similarly, relatively higher mean values were observed in the Dutch National Food Consumption Survey when an improved GHGE database using a bottom-up approach was used(Reference van de Kamp, van Dooren and Hollander27), compared with previous reports(Reference Temme, Toxopeus and Kramer20,Reference van Dooren, Tyszler and Kramer23,Reference Kramer, Tyszler and van’t Veer24) . Moreover, the estimation among a national representative sample of Swedish adults aged 18–80 years (energy misreporters excluded) using the database with a literature-based approach(Reference Sjörs, Hedenus and Sjölander28) was higher than that among participants aged 18–64 years (misreporters included but supplement consumers excluded)(Reference Vieux, Perignon and Gazan19) using another GHGE database(Reference Hartikainen and Pulkkinen39). Thus, to our knowledge, the effect of using different GHGE databases on the GHGE estimation was not fully examined within the same study.

This study aimed to develop a GHGE database for Japanese foods using three different approaches and to compare the results of estimated diet-related GHGE between the calculation methods. The secondary aim was to determine the major food contributor to diet-related GHGE. The result would help to choose the database to use in the future study in considering its limitation and difference with other methods.

Methods

Participants

Dietary data from healthy Japanese adults aged 20–69 years living in twenty study areas covering twenty-three of forty-seven prefectures were obtained. The survey was conducted from February to March 2013. The primary objective of this survey was to estimate Na and K excretion from 24-h urine and to identify their food sources(Reference Asakura, Uechi and Masayasu41,Reference Asakura, Uechi and Sasaki42) . Details of the study design and participant characteristics have been reported elsewhere(Reference Asakura, Uechi and Masayasu41,Reference Asakura, Uechi and Sasaki42) . In short, 791 healthy adults (395 men and 396 women) were recruited from co-workers or co-workers’ family members of research dietitians, who were working in separate welfare facilities and supported the study. The participants were not randomly sampled but were volunteers. The exclusion criteria were (i) licensed dietary or medical provider, (ii) residence in the prefecture or adjacent prefecture in which the facility was located for <6 months, (iii) individuals who were under diet therapy prescribed by a doctor or dietitian at the time of the study or within 1 year before the study, (iv) pregnant or lactating women and (v) individuals with history of educational admission for diabetes mellitus.

Dietary assessment

To reduce the burden to the participants and the research dietitians who managed and checked the recording sheets, half of the voluntary participants (n 400) were asked to complete a diet record over four non-consecutive days. The recording days consisted of three working days and 1 d off. The recording days were not randomly selected but selected with adjustment to each participant’s schedule. Around twenty individuals participated in the diet record survey from each study area with consideration of age and sex; each area included four participants (two men and two women) from each of the five 10-year age bands. Each participant was instructed on how to weigh each food and beverage and asked to record all foods and beverages consumed on the four recording days. If participants ate out and weighing was difficult, they were asked to record the restaurant’s name, name of dishes and whether any food was left uneaten. In total, 392 participants (196 men and 196 women) complied (participation rate 98 %).

All collected records were checked by the research dietitians. The research dietitians assigned food item numbers to all recorded foods and beverages according to the Standard Tables of Food Composition in Japan 2015(43). All records were then rechecked by trained dietitian staff at the survey centre. The mean intake of four assessment days was calculated.

Assessment of basic characteristics

Body height and weight were measured to the nearest 0·1 cm and 0·1 kg, respectively, by the research dietitians or medical staff in the welfare facilities. Participants wore light clothing and no shoes. BMI was calculated as body weight in kg divided by the square of height in meters (kg/m2). Blood pressure was measured by the research dietitians, nurses or participants themselves using sphygmomanometers in the welfare facilities. Physical activity level (PAL) was calculated by dividing metabolic equivalent-hour score by 24 h. Metabolic equivalent-h score was estimated by summing the product of the time spent on each of a range of activities (sleeping, standing, walking, cycling, running and activities causing sweating) with various exercise intensities and metabolic equivalent value for each activity(Reference Ainsworth, Haskell and Herrmann44,Reference Murakami, Sasaki and Okubo45) . Their occupation, educational background and smoking habit were assessed using a questionnaire.

The accuracy of reported EI was evaluated by the ratio of EI:BMR based on the Goldberg cut-off method(Reference Black46). EI:BMR was calculated by dividing average EI of four-assessment days by BMR calculated using sex-specific equation for Japanese population as follows: BMR = (0·0481 × weight (kg) + 0·0234 × height (cm) – 0·0138 × age – X (men = 0·4235, women = 0·9708)) × 1000/4·186(47). Participants were identified as plausible-, under- and over-reporters of EI according to whether the EI:BMR of individual was within, below or above the 95 % confidence limits for agreement between EI:BMR and the respective PAL. When the PAL for sedentary lifestyle (i.e. 1·55 for men and 1·56 for women) was assumed for all subjects, under-, plausible- and over-reporters were defined as having EI:BMR < 1·02, 1·02–2·35 and >2·35 for men and <1·03, 1·03–2·36 and >2·36 for women, respectively. The reason for this assumption was that there is no objective PAL value other than self-reported PAL described above which was assessed with the questionnaire. Under- or over-reporters were identified in this study but were not excluded from the analysis to avoid bias for that exclusion(Reference Livingstone and Black37,Reference Murakami and Livingstone48) .

Greenhouse gas emissions database for food linking to nutrition composition database

Three methods were used to develop the database of GHGE of Japanese food. One was a literature-based method and two were production- and consumption-based input–output tables (IOT)-applied methods. Details of the methodology for database development of the GHGE of food are described in the online supplementary material. GHGE was expressed as CO2-eq.

Greenhouse gas emissions database based on a literature review

In the literature-based method, the GHGE database was developed using a literature review. The systematic literature search for LCA studies that focused on foods consumed in Japan was conducted in July 2018 across three types of literature: peer-reviewed journal papers, conference proceedings and grey reports. Medline (PubMed), Web of Science and Environmental Science Databases (ProQuest, Ebsco and Google Scholar) were searched for peer-reviewed journal papers and conference proceedings published in English using the key words (‘life cycle assessment’ OR ‘life cycle analys*s’ OR ‘LCA’ OR ‘life cycle’) AND (‘greenhouse gas*’ OR ‘GHG*’ OR ‘carbon dioxide’ OR CO2 OR ‘global warming potential’ OR GWP) AND (Japan*) AND ‘plural or single form of food name.’ In total, forty-seven reports were extracted through screening of title and abstract and subsequent full-text check. Because of the lack of LCA data for Japanese food, some values were complemented with a global LCA literature database, that is, the Double Food-Environmental Pyramid model(49). The functional unit was standardised as ‘g CO2-eq/g food.’ System boundary was also standardised from farm to regional distribution centres or retail. After standardisation of functional unit and system boundaries, sample means of the GHGE values accounting each food were calculated. As a result, the GHGE database of the literature-based method included 163 foods.

Greenhouse gas emissions database based on input–output tables in Japan

In the production- and consumption-based IOT-applied methods, GHGE databases were developed using GHGE intensity values and unit price data. In this study, emission intensities were determined using the global link input–output (GLIO) model(Reference Nansai, Kagawa and Kondo50) comprising 804 economic sectors in Japan and 230 foreign countries and regions. The GLIO model describes the relationship between the production and consumption systems of Japan and foreign countries. This model was developed to meet the demand to include the global emissions associated with Japanese commodities, given the high dependence rate of fossil fuels and other resources on foreign countries(Reference Nansai, Kagawa and Kondo50). There were both production- and consumption-based intensity values in the published data expressed as per standard monetary unit (e.g. t CO2-eq per million Japanese yen; M JPY) for each sector.

Production-based GHGE for each food item was calculated by multiplying the production costs (i.e. unit prices of products) with producer-based GHGE intensities from the GLIO model. The production value, production volume and unit prices (yen per product weight or volume) of each commodity except for some agricultural products or seafood products were obtained from the ‘Table of Domestic Products by Sector and Commodity (TDP)’ (Bumonbetsu-Hinmokubetsu Kingaku-hyo in Japanese)(51). The TDP of the year 2005 (TDP 2005) was used because the GLIO model was calculated based on the 2005 Japanese IOT. When there was no unit price in TDP 2005 for a certain food item, the unit value was calculated using the production value and volume or shipment value and quantity published in National Statistics(5257).

Consumption-based GHGE for each food item was calculated by multiplying the commodity costs (i.e. unit price of the commodity) with consumer-based GHGE intensities from the GLIO model. The unit price of the commodity was obtained mainly from the 2005 National Retail Price Survey (NRP 2005)(58) according to the year of the IOT used to calculate the GLIO model. This survey is conducted annually in 167 villages, towns and cities, and average prices are calculated as mean values of all survey areas, weighted for population size. For food items that were selected as mainly consumed foods but for which the price data were not available in the NRP 2005, prices were taken from the websites of the nationally distributed supermarkets (Seiyu, AEON and Ito-Yokado, Japan). A food item appearing five times or more in total in the whole record, and total intake of it was more than 100 g was selected as ‘mainly consumed food.’ When more than one food item was selected from the same food subgroup, one food which total intake was largest in the subgroup was further selected. However, the price of vegetables, fruits and seafood could not be obtained from these websites due to seasonality. Thus, the mean price value of the foods in the same food group obtained from NRP 2005 was used.

Consequently, GHGE databases of the IOT-applied method included 354 foods for production-based method and 228 foods for consumption-based method.

Linkage of the databases and weight adjustment

The GHGE values in each GHGE database were linked to 2231 food items including 2229 food items from the Standard Tables of Food Composition in Japan(43) and two additional food items, ‘water for drinking’ and ‘water for cooking.’ The values for each food were determined systematically, based on extrapolation of comparable products. The steps for data assignment are described in the online supplementary material. All procedure was conducted by one author (M.S.). The GHGE value for ‘tap water’ was assigned to seaweeds, and the GHGE values for major ingredient such as soya beans or tap water were assigned to seasonings, as there were no GHGE values obtained from literature-based method for seaweeds and seasonings. In addition, GHGE value for ‘tap water’ in both IOT methods was assumed zero due to the lack of national representative price value data for tap water. Taking into account the weight change during cooking and from wastage, GHGE values were adjusted based on the wastage rate and weight change rate in the Standard Tables of Food Composition in Japan as needed.

Statistical analysis

The median of GHGE value for food items (per kg food weight) was calculated by food category as defined by the previous report(Reference Asakura, Uechi and Masayasu41). Median was used because the GHGE values were varied by food items even in the same food group but similar food items in the same food group had the same GHGE values due to data assignment procedure. Foods in the ‘meat’ group were further categorised into beef, pork, chicken, meat products and other meat. Twenty-three food items categorised as ‘ready-made foods’ were assumed to be made at home from scratch and excluded from this calculation by food group but included in the following analysis for diet-related GHGE per person. GHGE values were compared between the calculation methods with Wilcoxon signed-rank test by food groups. P values were corrected for multiple comparisons by using the Benjamini–Hochberg approach(Reference Benjamini and Hochberg59).

With regard to other variables, the mean intake values were calculated from the four consumption days. Based on 2231 food items, diet-related GHGE was calculated by multiplying the GHGE value for food items and mean food intake of four assessment days. It was assumed that all dishes were made at home from scratch. Data were presented as mean (sd) for continuous variables and numbers and percentages of participants for categorical variables. The mean differences in the diet-related GHGE among the three calculation methods (i.e. literature-based method and production- and consumption-based IOT-applied methods) were examined using paired t test with both total and food group level. P values were corrected for multiple comparisons by using the Benjamini–Hochberg approach(Reference Benjamini and Hochberg59). Spearman’s correlation coefficients between total diet-related GHGE between calculation methods were also examined. Percentage contribution of each food group to diet-related GHGE was calculated as mean diet-related GHGE from each food group per mean total diet-related GHGE. Percentage contribution from ‘ready-made foods’ (twenty-three food items) was allocated to other food groups according to their ingredients. Statistical analyses were performed using SAS statistical software (version 9.4, SAS Institute). All reported P values were two tailed, and corrected P value of <0·05 was considered significant.

Results

Table 1 represents the median and 25th and 75th percentiles of GHGE of foods per food weight. GHGE value of food item significantly differed between the calculation methods in most food groups. Beef had the largest GHGE values in all three databases, but the GHGE value varied by methods. For example, the GHGE value of beef was nearly three times higher in the consumption-based IOT-applied method than in the production-based IOT-applied method.

Table 1 Greenhouse gas emissions (GHGE) of each food (kg-CO2 eq/kg) in foods included in Standard Tables of Food Composition in Japan

CO2-eq, carbon dioxide equivalent; IOT, input–output tables.

a,b,cValues with unlike superscript letters within a row are significantly different from each other by Wilcoxon’s signed-rank sum tests. P values were corrected for multiple comparisons by using the Benjamini–Hochberg approach(Reference Benjamini and Hochberg59), and statistical significance was determined by a corrected two-sided P < 0·05.

* Food group classification was according to Asakura et al.(Reference Asakura, Uechi and Masayasu41). Food group ‘ready-made food’ (twenty-three food items) was excluded from this presentation.

‘Number of foods’ represents the number of food items in the database which categorised to each food group.

In the ‘literature-based method,’ GHGE database was developed by a literature review of previous research calculating life cycle GHGE of food with life cycle assessment (from cradle to regional distribution centre).

§ In the ‘IOT-applied methods,’ GHGE databases (production-based and consumption-based) were developed based on Japanese input–output table (i.e. the global link input–output model; GLIO model)(Reference Nansai, Kagawa and Kondo50).

In the literature-based method, GHGE values for seaweeds were calculated assuming to the same as those of ‘tap water.’

In the literature-based method, GHGE values for seasonings were calculated using a combined value of ingredients for each food.

** In the IOT-applied methods, the GHGE value for bottled water was obtained but those for tap water was not calculated due to lack of national representative price value data for tap water.

Basic characteristics of the study participants are shown in Table 2. Mean age was 44·5 (sd 13·4) years, and BMI was 23·3 (sd 3·7) kg/m2. More than 70 % of participants graduated from vocational school, junior college or university. The number (%) of under- and over-reporters of EI was fourteen (3·6 %; nine men and five women) and nine (2·3 %; three men and six women) of 392 participants, respectively.

Table 2 Basic characteristics of 196 Japanese men and 196 women (aged 20–69 years)

* One missing value in men was excluded from the calculation.

Two missing values in women were excluded from the calculation.

Table 3 represents the total diet-related GHGE as well as the GHGE from each food group. A significant difference was observed in the mean total diet-related GHGE values among the three methods: literature-based (4145 g CO2-eq/d), production-based (4145 g CO2-eq/d) and consumption-based IOT-applied methods (7392 g CO2-eq/d). Diet-related GHGE values significantly differed in almost all food group levels as well between the three methods. The largest difference was observed in total diet-related GHGE and diet-related GHGE from fish and seafood and meat. The top food contributor was meat, followed by fish and seafood, irrespective of the estimation methods. Within the meat group, beef had the largest contribution in all methods. Cereal was the third or fourth largest contributor. Seasonings were a subsequently large contributor in both IOT-applied methods but not in the literature-based method. The Spearman’s correlation coefficients for total diet-related GHGE among the three methods ranged from 0·82 to 0·86.

Table 3 Diet-related greenhouse gas emissions (GHGE) (g-CO2-eq/d) and contribution of each food group to dietary-related GHGE in 196 Japanese men and 196 women (aged 20–69 years), estimated by literature-based and production- and consumption-based accounting IOT-applied methods

CO2-eq, carbon dioxide equivalent; IOT, input–output tables.

a,b,cValues with unlike superscript letters within a row are significantly different from each other by Wilcoxon’s signed-rank sum tests. P values were corrected for multiple comparisons by using the Benjamini–Hochberg approach(Reference Benjamini and Hochberg59), and statistical significance was determined by a corrected two-sided P < 0·05.

* Literature-based GHGE database was developed by a literature review of previous research calculating life cycle GHGE of food with life cycle assessment (from cradle to regional distribution centre).

IOT-applied GHGE databases were developed by using Japanese input–output table (i.e. the global link input–output model(Reference Nansai, Kagawa and Kondo50)).

Calculated as the mean value of diet-related GHGE with food group level divided by the mean total diet-related GHGE.

§ In the literature-based method, GHGE values for seaweeds were calculated assuming to the same as those of ‘tap water.’

In the literature-based method, GHGE values for seasonings were calculated using a combined value of ingredients for each food.

In the consumption-based IOT-based method, ‘tap water’ was assumed to be ‘0’ because GHGE for tap water could not be calculated for lack of the price value of tap water.

Discussion

To our knowledge, this is the first study to compare the different methods of calculating the GHGE of food used for estimating the total diet-related GHGE. Although strong correlations were observed among the three methods, the mean total diet-related GHGE significantly differed among the three methods. Moreover, similar results were observed in terms of major contributors, but the means of GHGE in food group level significantly differed depending on the method. These differences between methods resulted from the difference of the GHGE value of each food and the number of emission factors included in each database.

Although it was difficult to compare the results between different studies due to heterogeneity of system boundary and method, mean total diet-related GHGE in the present study obtained using the literature-based method and production-based IOT-applied method was similar to the estimation in the USA(Reference Heller, Willits-Smith and Meyer16) and several European countries(Reference Vieux, Soler and Touazi11,Reference Vieux, Darmon and Touazi15,Reference Werner, Flysjö and Tholstrup18Reference Temme, Toxopeus and Kramer20) , but slightly higher than the values reported in China and India(Reference Green, Joy and Harris13,Reference Song, Li and Fullana-i-Palmer14,Reference Song, Li and Semakula60) . Given the limited system boundary in these GHGE databases and the relatively lower extent of energy misreporting of dietary data in this study, total diet-related GHGE with the literature-based method and production-based IOT-applied method could be underestimated. By contrast, the GHGE based on the consumption-based IOT-applied method was much higher than values obtained using the other two methods. This might be because the unit prices of some foods, including fish and seafood and meet, especially beef, for the consumption-based IOT-applied method were much higher than those for the production-based IOT-applied methods, possibly due to the difference in data source. Intensity values from the GLIO model were in the same order, which means that the impact from the post-production stage was relatively small(Reference Nansai, Kagawa and Kondo50). The much higher GHGE values in beef in consumption-based IOT-applied method would be explained with the same reason. Actually, the unit price at consumer derived from the NRP 2005 for beef was higher (3·21–7·70 JPY/g) than that calculated from the Livestock census(54) as production-based unit price (0·679 JPY/g). On the other hand, intensity values of production- and consumption-based were in the same order (e.g. 15·42 v. 14·31 t CO2eq/M JPY). It is unknown whether the estimation based on consumption-based IOT-applied method is over-estimate or appropriate as there is no available gold standard measurement of diet-related GHGE. It is possible that this estimation is reasonable with the assumption that higher resource consumption in post-production stage results in higher unit price for some food groups. The estimated value needed to be compared with the estimation based on another approach including post-production stage to evaluate the validity in the further study.

Consistent with previous studies from Western countries(Reference Vieux, Darmon and Touazi15,Reference Vieux, Perignon and Gazan19Reference Hyland, Henchion and McCarthy21,Reference Green, Milner and Dangour26) , livestock meat was a major contributor to diet-related GHGE among Japanese people. This suggests strong evidence for the recommendation of reducing the intake of livestock meat and improving the production of livestock meat(Reference Garnett1,Reference Mcmichael, Powles and Butler2,Reference Garnett6Reference Tilman and Clark8,Reference Chaudhary, Gustafson and Mathys61,Reference Aston, Smith and Powles62) . On the contrary, cereals and fish and seafood had a large contribution among Japanese adults, while dairy products had a small contribution among this group. This result was similar to that reported in China, where rice and vegetables were major contributors, followed by pork and fish(Reference Song, Li and Fullana-i-Palmer14,Reference Song, Li and Semakula60) . In such countries, other strategies should be implemented to achieve a sustainable diet, in addition to replacing animal-based foods with plant-based foods(Reference Poore and Nemecek63). Moreover, diet-related GHGE from seasonings should not be ignored among Japanese. Seasonings were a major source of high Na intake among Japanese people(Reference Asakura, Uechi and Masayasu41). Thus, reducing Na intake from seasonings should be emphasised from both the health and environmental perspectives. In this regard, caution is needed for the data quality of GHGE value for seasonings. The data quality for seasonings was lower than other food items in the literature-based method because the values of ingredients were extrapolated. Besides, the data quality for seasonings in both IOT-applied methods would be similar to other food items because the GHGE values were calculated as with other food items. Based on this, IOT-applied method would be better to assess diet-related GHGE from seasonings.

In many previous studies, diet-related GHGE values were calculated based only on one type of GHGE database(Reference Hendrie, Ridoutt and Wiedmann9,Reference Pairotti, Cerutti and Martini10,Reference Vieux, Perignon and Gazan19Reference Hyland, Henchion and McCarthy21,Reference Vieux, Soler and Touazi11Reference Werner, Flysjö and Tholstrup18) . No previous study has compared the diet-related GHGE values obtained using different estimation methods used within the same study. In independent but comparable previous studies, similar or relatively higher diet-related GHGE values were obtained through estimation using the latest database or originally developed database(Reference Vieux, Soler and Touazi11,Reference Hoolohan, Berners-Lee and Mckinstry-West25,Reference van de Kamp, van Dooren and Hollander27) compared with the estimation using the previous database or those developed by other researchers(Reference Vieux, Soler and Touazi11,Reference Vieux, Perignon and Gazan19,Reference Temme, Toxopeus and Kramer20,Reference Berners-Lee, Hoolohan and Cammack40) . The reason why relatively higher GHGE values were obtained in these previous studies is unknown. It is also difficult to decide which value was more accurate as there is no gold standard method to estimate diet-related GHGE as mentioned above. However, it is possible that the diet-related GHGE from some foods which was under- or over-estimated with the original database was changed in the later version because of the improvement of calculation or newly calculated GHGE value for some food. In addition, major food contributors were also similar among them. Partly consistent with these previous studies, relatively similar mean values were obtained using the literature-based method and production-based IOT-applied method in this study. Moreover, the three methods had a similar result for identifying major food contributors. However, total diet-related GHGE values were significantly different, and diet-related GHGE values at food group level also differed among the three methods. Thus, the use of different GHGE databases might have a huge effect on the estimation of total diet-related GHGE.

This study had several limitations. First, there are some methodological limitations in the GHGE databases developed in this study. With regard to the literature-based method, heterogeneity was found among aggregated LCA studies, including differences in system boundary, functional unit and simulated model(Reference Clune, Crossin and Verghese34). Studies from other countries were also included as only a few studies have been conducted in Japan. In addition, GHGE values for some food categories were not obtained, while IOT-applied methods covered all food categories except for tap water. Moreover, emission from international transportation could not be included in most cases. These would result in underestimation of diet-related GHGE. By contrast, GHGE intensity values from the GLIO model for IOT-applied methods were not represented in the food item level but in the industrial sector level. This means that precision of GHGE value was depending on the quality of the price data, namely food item classification and accuracy of unit price in price data. In particular, in the consumption-based IOT-applied method, food classifications in the NRP 2005 differed from those in the IOT due to different publishers, while that of the TDP cited for the production-based IOT-applied method was based on IOT. Furthermore, there might be misclassification of food items not only in the above method but also in all methods because food classification and descriptions were different for food items in the GHGE data and SFCTJ 2015. Considering these, the production-based IOT-applied method would be more practical and reliable to use in future studies among the Japanese population compared with the other two methods as it covers a wide range of food items and has relatively small classification bias and methodological heterogeneity, although composite dishes were not included.

Second, this study included only the GHGE and did not consider other environmental indicators as well as other sustainable diet factors. A holistic approach employing several indicators(Reference Chaudhary, Gustafson and Mathys61) as well as a multi-dimensional approach is needed in future studies according to the concept of sustainable diet(64). Various factors regarding environmental, nutritional, economical and socio-cultural, such as land use, water use, biodiversity, diet quality, affordability and cultural continuity, should be included. Assessing sustainable diet level using such various indicators is one of the possible methods(Reference Seconda, Baudry and Pointereau65). However, the GLIO model only included energy use, GHGE, nitrogen oxide and sulphur oxides. In addition, the development of literature-based would be difficult because bottom-up study for food consumed in Japan assessing other indicators was further limited than GHGE. The database should be extended to include other indicators based on other published data set or data sampling. Third, emission from cooking at home, excluding that from cooking rice, was not included in this study due to the differences in cooking methods and equipment used. In addition, the processing stage for ready-to-eat food and eating occasion were not considered though about 45 % dishes were ready-made food, processed food or dishes served at restaurant. Previous studies reported that the cooking stage at home has a 4·8 % (breakfast) to 25 % (lunch) contribution to total CO2 emission based on modelled menus in Japan(Reference Tsuda, Douzono and Ohya66), and ready-made foods could have higher emission intensity than home-made meals(Reference Rivera and Azapagic67). The exclusion of emission from cooking at home and the assumption that ‘all food was made at home from scratch’ to the ready-made food could cause under-estimation of diet-related GHGE. These processing stages of both at home and outside home should be considered in future studies. Fourth, diet-related GHGE in this study was estimated based on self-reported dietary intake, which was prone to misreporting due to the changes in dietary habits during the assessment period. However, the proportion of under- and over-reporter of EI is relatively small (3·6 and 2·3 %, respectively). Thus, energy misreporting was minimised in this study. On the contrary, there could be some seasonality effect on food choice among participants; diet was assessed only in winter. Previous study reported seasonal difference of nutritional intake among Japanese(Reference Tokudome, Imaeda and Nagaya68) but monthly difference has not been reported. February and March were often categorised to the same season. Thus, the month when survey was conducted did not consider to be matter for the consumed foods in this study. Finally, the participants were not randomly sampled from the general Japanese population. It was possible that there was some difference in diet among these participants and general Japanese population. However, food intake of our participants was not much different from the general Japanese population. For example, intake of cereal, vegetables, fish and seafood and meat among the participants in this study was 450, 245, 70·2 and 93·3 g/d, respectively, while the range of mean intake in national representative sample of Japanese (20–69 years)(69) was 424–471, 233–304, 56–91 and 77–122 g/d, respectively. In addition, as mentioned in previous studies, basic characteristics of the participants were similar to those of the general participants(Reference Asakura, Uechi and Masayasu41,Reference Asakura, Uechi and Sasaki42) .

In conclusion, although similar results were observed in terms of major food contributors to the diet-related GHGE, a significant difference was observed in the estimated mean value of the diet-related GHGE among the three calculation methods using different approaches. This suggests that using the GHGE database developed from different approaches could result in differences in the estimation of the absolute values of diet-related GHGE. Hence, caution is needed when comparing the estimated GHGE values between studies using other GHGE databases.

Acknowledgements

Acknowledgements: The authors and their colleagues thank the dietitians who supported the survey in each welfare facility for their valuable contribution and Editage (www.editage.jp) for English language editing. Financial support: The present study was supported by a Health and Labour Sciences Research Grant (H23-Jyunkankitou (seishuu)-ippan-001) from the Ministry of Health, Labour and Welfare, Japan and a Grant-in-Aid for Japan Society for the Promotion of Science Fellows (18J21618) from the Japan Society for the Promotion of Science. Conflict of interest: The authors declare that they have no conflicts of interest. Authorship: M.S. designed the research, conducted systematic literature review, developed the GHGE databases, analysed and interpreted the data and prepared the first draft of the manuscript; K.M. provided critical oversight of the project, including critical input into the final draft of the manuscript; K.A. collected and arranged the data; S.M. arranged the study area and was involved in the recruitment of study participants; and S.S. designed and directed the dietary survey and assisted in the writing. All authors contributed to the development of the manuscript. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving research study participants were approved by the Ethics Committee of the University of Tokyo, Faculty of Medicine (approval number: 10005, approval date: 7 January 2013). Written informed consent was obtained from all participants.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980019004750

References

Garnett, T (2011) Where are the best opportunities for reducing greenhouse gas emissions in the food system (including the food chain)? Food Policy 36, S23S32.10.1016/j.foodpol.2010.10.010CrossRefGoogle Scholar
Mcmichael, AJ, Powles, JW, Butler, CD et al. (2007) Food, livestock production, energy, climate change, and health. Lancet 370, 12531263.CrossRefGoogle ScholarPubMed
Moss, RH, Edmonds, JA, Hibbard, KA et al. (2010) The next generation of scenarios for climate change research and assessment. Nature 463, 747756.10.1038/nature08823CrossRefGoogle ScholarPubMed
Garnett, T (2009) Livestock-related greenhouse gas emissions: impacts and options for policy makers. Environ Sci Policy 12, 491503.10.1016/j.envsci.2009.01.006CrossRefGoogle Scholar
Macdiarmid, JI (2013) Is a healthy diet an environmentally sustainable diet? Proc Nutr Soc 72, 1320.10.1017/S0029665112002893CrossRefGoogle ScholarPubMed
Garnett, T (2013) Food sustainability: problems, perspectives and solutions. Proc Nutr Soc 72, 2939.CrossRefGoogle ScholarPubMed
Willett, W, Rockström, J, Loken, B et al. (2019) Food in the anthropocene: the EAT–Lancet Commission on healthy diets from sustainable food systems. Lancet 393, 447492.10.1016/S0140-6736(18)31788-4CrossRefGoogle ScholarPubMed
Tilman, D & Clark, M (2014) Global diets link environmental sustainability and human health. Nature 515, 518522.CrossRefGoogle ScholarPubMed
Hendrie, GA, Ridoutt, BG, Wiedmann, TO et al. (2014) Greenhouse gas emissions and the Australian diet-comparing dietary recommendations with average intakes. Nutrients 6, 289303.10.3390/nu6010289CrossRefGoogle ScholarPubMed
Pairotti, MB, Cerutti, AK, Martini, F et al. (2015) Energy consumption and GHG emission of the Mediterranean diet: a systemic assessment using a hybrid LCA-IO method. J Clean Prod 103, 507516.CrossRefGoogle Scholar
Vieux, F, Soler, L, Touazi, D et al. (2013) High nutritional quality is not associated with low greenhouse gas emissions in self-selected diets of French adults. Am J Clin Nutr 97, 569583.CrossRefGoogle Scholar
Bertoluci, G, Masset, G, Gomy, C et al. (2016) How to build a standardized country-specific environmental food database for nutritional epidemiology studies. PLoS One 11, e0150617.CrossRefGoogle ScholarPubMed
Green, RF, Joy, EJM, Harris, F et al. (2018) Greenhouse gas emissions and water footprints of typical dietary patterns in India. Sci Total Environ 643, 14111418.10.1016/j.scitotenv.2018.06.258CrossRefGoogle ScholarPubMed
Song, G, Li, M, Fullana-i-Palmer, P et al. (2017) Dietary changes to mitigate climate change and benefit public health in China. Sci Total Environ 577, 289298.CrossRefGoogle ScholarPubMed
Vieux, F, Darmon, N, Touazi, D et al. (2012) Greenhouse gas emissions of self-selected individual diets in France: changing the diet structure or consuming less? Ecol Econ 75, 91101.10.1016/j.ecolecon.2012.01.003CrossRefGoogle Scholar
Heller, MC, Willits-Smith, A, Meyer, R et al. (2018) Greenhouse gas emissions and energy use associated with production of individual self-selected US diets. Environ Res Lett 13, 044004.CrossRefGoogle ScholarPubMed
Sjörs, C, Raposo, SE, Sjölander, A et al. (2016) Diet-related greenhouse gas emissions assessed by a food frequency questionnaire and validated using 7-day weighed food records. Environ Health 15, 15.CrossRefGoogle ScholarPubMed
Werner, LB, Flysjö, A & Tholstrup, T (2014) Greenhouse gas emissions of realistic dietary choices in Denmark: the carbon footprint and nutritional value of dairy products. Food Nutr Res 58, 20687.10.3402/fnr.v58.20687CrossRefGoogle ScholarPubMed
Vieux, F, Perignon, M, Gazan, R et al. (2018) Dietary changes needed to improve diet sustainability: are they similar across Europe? Eur J Clin Nutr 72, 951960.CrossRefGoogle ScholarPubMed
Temme, EHM, Toxopeus, IB, Kramer, GFH et al. (2014) Greenhouse gas emission of diets in the Netherlands and associations with food, energy and macronutrient intakes. Public Health Nutr 18, 24332445.CrossRefGoogle ScholarPubMed
Hyland, JJ, Henchion, M, McCarthy, M et al. (2017) The climatic impact of food consumption in a representative sample of Irish adults and implications for food and nutrition policy. Public Health Nutr 20, 726738.10.1017/S1368980016002573CrossRefGoogle Scholar
Murakami, K & Livingstone, MBE (2018) Greenhouse gas emissions of self-selected diets in the UK and their association with diet quality: is energy under-reporting a problem? Nutr J 17, 27.CrossRefGoogle ScholarPubMed
van Dooren, C, Tyszler, M, Kramer, GFH et al. (2015) Combining low price, low climate impact and high nutritional value in one shopping basket through diet optimization by linear programming. Sustainability 7, 1283712855.10.3390/su70912837CrossRefGoogle Scholar
Kramer, GF, Tyszler, M, van’t Veer, P et al. (2017) Decreasing the overall environmental impact of the Dutch diet: how to find healthy and sustainable diets with limited changes. Public Health Nutr 20, 16991709.CrossRefGoogle ScholarPubMed
Hoolohan, C, Berners-Lee, M, Mckinstry-West, J et al. (2013) Mitigating the greenhouse gas emissions embodied in food through realistic consumer choices. Energy Policy 63, 10651074.10.1016/j.enpol.2013.09.046CrossRefGoogle Scholar
Green, R, Milner, J, Dangour, AD et al. (2015) The potential to reduce greenhouse gas emissions in the UK through healthy and realistic dietary change. Clim Change 129, 253265.CrossRefGoogle Scholar
van de Kamp, ME, van Dooren, C, Hollander, A et al. (2018) Healthy diets with reduced environmental impact? The greenhouse gas emissions of various diets adhering to the Dutch food based dietary guidelines. Food Res Int 104, 1424.CrossRefGoogle ScholarPubMed
Sjörs, C, Hedenus, F, Sjölander, A et al. (2017) Adherence to dietary recommendations for Swedish adults across categories of greenhouse gas emissions from food. Public Health Nutr 20, 33813393.CrossRefGoogle ScholarPubMed
Hellweg, S & Canals, LMI (2014) Emerging approaches, challenges and opportunities in life cycle assessment. Science 344, 11091113.10.1126/science.1248361CrossRefGoogle ScholarPubMed
Hitaj, C, Rehkamp, S, Canning, P et al. (2019) Greenhouse gas emissions in the United States food system: current and healthy diet scenarios. Environ Sci Technol 53, 54935503.CrossRefGoogle ScholarPubMed
Boehm, R, Wilde, PE, Ver Ploeg, M et al. (2018) A comprehensive life cycle assessment of greenhouse gas emissions from U.S. household food choices. Food Policy 79, 6776.CrossRefGoogle Scholar
Boehm, R, Ver Ploeg, M, Wilde, PE et al. (2019) Greenhouse gas emissions, total food spending and diet quality by share of household food spending on red meat: results from a nationally representative sample of US households. Public Health Nutr 22, 17941806.10.1017/S136898001800407XCrossRefGoogle ScholarPubMed
Roy, P, Nei, D, Orikasa, T et al. (2009) A review of life cycle assessment (LCA) on some food products. J Food Eng 90, 110.CrossRefGoogle Scholar
Clune, S, Crossin, E & Verghese, K (2017) Systematic review of greenhouse gas emissions for different fresh food categories. J Clean Prod 140, 766783.CrossRefGoogle Scholar
Feng, K, Chapagain, A, Suh, S et al. (2011) Comparison of bottom-up and top-down approaches to calculating the water footprints of nations. Econ Syst Res 23, 371385.CrossRefGoogle Scholar
Mertens, E, Kuijsten, A, Geleijnse, JM et al. (2019) FFQ versus repeated 24-h recalls for estimating diet-related environmental impact. Nutr J 18, 112.CrossRefGoogle ScholarPubMed
Livingstone, MBE & Black, AE (2003) Markers of the validity of reported energy intake. J Nutr 133, 895S920S.CrossRefGoogle ScholarPubMed
Masset, G, Vieux, F, Verger, EO et al. (2014) Reducing energy intake and energy density for a sustainable diet: a study based on self-selected diets in French adults. Am J Clin Nutr 99, 14601469.CrossRefGoogle ScholarPubMed
Hartikainen, H & Pulkkinen, H (2016) Summary of the Chosen Methodologies and Practices to Produce GHGE-Estimates for an Average European Diet. Helsinki: Natural Resources Institute Finland.Google Scholar
Berners-Lee, M, Hoolohan, C, Cammack, H et al. (2012) The relative greenhouse gas impacts of realistic dietary choices. Energy Policy 43, 184190.CrossRefGoogle Scholar
Asakura, K, Uechi, K, Masayasu, S et al. (2015) Sodium sources in the Japanese diet: difference between generations and sexes. Public Health Nutr 19, 20112023.CrossRefGoogle ScholarPubMed
Asakura, K, Uechi, K, Sasaki, Y et al. (2014) Estimation of sodium and potassium intakes assessed by two 24 h urine collections in healthy Japanese adults: a nationwide study. Br J Nutr 112, 119205.CrossRefGoogle ScholarPubMed
Science and Technology Agency (2015) Standard Tables of Food Composition in Japan, 7th ed. Tokyo: Printed Bureau of Ministry of Finance.Google Scholar
Ainsworth, BE, Haskell, WL, Herrmann, SD et al. (2011) Compendium of physical activities: a second update of codes and MET values. Med Sci Sports Exerc 43, 15751581.CrossRefGoogle ScholarPubMed
Murakami, K, Sasaki, S, Okubo, H et al. (2007) Association between dietary fiber, water and magnesium intake and functional constipation among young Japanese women. Eur J Clin Nutr 61, 616622.10.1038/sj.ejcn.1602573CrossRefGoogle ScholarPubMed
Black, AE (2000) The sensitivity and specificity of the Goldberg cut-off for EI:BMR for identifying diet reports of poor validity. Eur J Clin Nutr 54, 395404.CrossRefGoogle ScholarPubMed
Ministry of Health Labour and Welfare (2015) Dietary Reference Intakes for Japanese. Tokyo: Ministry of Health Labour and Welfare.Google Scholar
Murakami, K & Livingstone, MBE (2015) Prevalence and characteristics of misreporting of energy intake in US adults: NHANES 2003–2012. Br J Nutr 145, 27152724.10.3945/jn.115.219808CrossRefGoogle Scholar
Barilla Center for Food & Nutrition (2016) Double Pyramid 2016 a more Sustainable Future Depends on Us. Parma: Barilla Center for Food & Nutrition.Google Scholar
Nansai, K, Kagawa, S, Kondo, Y et al. (2009) Improving the completeness of product carbon foodprints using a global link input-output model: the case of Japan. Econ Syst Res 9, 267290.10.1080/09535310903541587CrossRefGoogle Scholar
Ministry of Internal Affairs and Communications (2019) Sangyo-Renkan-hyo (Japanese Input-Output Table). http://www.soumu.go.jp/toukei_toukatsu/data/io/ (accessed February 2019).Google Scholar
Ministry of Internal Affairs and Communications (2019) Kougyo-Toukei (in Japanese). http://www.meti.go.jp/statistics/tyo/kougyo/index.html (accessed March 2019).Google Scholar
Ministry of Agriculture Forestry and Fisheries (2019) Kaimengyo-gyo Seisan Toukei Chosa (in Japanese). http://www.maff.go.jp/j/tokei/kouhyou/kaimen_gyosei/ (accessed March 2019).Google Scholar
Ministry of Agriculture Forestry and Fisheries (2019) Tikusan Tokei Chosa (in Japanese). http://www.maff.go.jp/j/tokei/kouhyou/tikusan/ (accessed March 2019).Google Scholar
Ministry of Agriculture Forestry and Fisheries (2019) Tokuyo Rinsanbutsu Seisan Toukei Chosa (in Japanese). http://www.maff.go.jp/j/tokei/kouhyou/tokuyo_rinsan/ (accessed March 2019).Google Scholar
Ministry of Agriculture Forestry and Fisheries (2019) Shokuryo jukyu hyo (in Japanese). http://www.maff.go.jp/j/zyukyu/fbs/ (accessed March 2019).Google Scholar
Ministry of Agriculture Forestry and Fisheries (2019) Sakkyo chosa (in Japanese). http://www.maff.go.jp/j/tokei/kouhyou/sakumotu/index.html (accessed March 2019).Google Scholar
Statistics Bureau (2005) National retail price survey. https://www.stat.go.jp/data/kouri/doukou/2005np.html (accessed March 2019).Google Scholar
Benjamini, Y & Hochberg, Y (1995) Controlling the false discovery rate: a practical and powerful approach to multiple testing. J R Stat Soc 57, 289300.Google Scholar
Song, G, Li, M, Semakula, HM et al. (2015) Food consumption and waste and the embedded carbon, water and ecological footprints of households in China. Sci Total Environ 529, 191197.10.1016/j.scitotenv.2015.05.068CrossRefGoogle ScholarPubMed
Chaudhary, A, Gustafson, D & Mathys, A (2018) Multi-indicator sustainability assessment of global food systems. Nat Commun 9, 113.CrossRefGoogle ScholarPubMed
Aston, LM, Smith, JN & Powles, JW (2012) Impact of a reduced red and processed meat dietary pattern on disease risks and greenhouse gas emissions in the UK: a modelling study. BMJ Open 2, e001072.CrossRefGoogle ScholarPubMed
Poore, J & Nemecek, T (2018) Reducing food’s environmental impacts through producers and consumers. Sustainability 992, 987992.Google Scholar
FAO (2010) Biodiversity and Sustainable Diets-United Against Hunger. Rome: Food and Agriculture Organization of the United Nations.Google Scholar
Seconda, L, Baudry, J, Pointereau, P et al. (2019) Development and validation of an individual sustainable diet index in the NutriNet-Santé study cohort. Br J Nutr 121, 11661177.10.1017/S0007114519000369CrossRefGoogle ScholarPubMed
Tsuda, T, Douzono, H & Ohya, C (2008) Life-cycle CO2 emission associated with model menus for Japanese meals (in Japanese). J Cook Sci Jpn 41, 289296.Google Scholar
Rivera, XCS & Azapagic, A (2016) Life cycle costs and environmental impacts of production and consumption of ready and home-made meals. J Clean Prod 112, 214228.CrossRefGoogle Scholar
Tokudome, Y, Imaeda, N, Nagaya, T et al. (2002) Daily, weekly, seasonal, within- and between-individual variation in nutrient intake according to four season consecutive 7 day weighed diet records in Japanese female dietitians. J Epidemiol 12, 8592.CrossRefGoogle ScholarPubMed
Ministry of Health Labour and Welfare (2013) The National Health and Nutrition Survey in Japan (in Japanese). http://www.mhlw.go.jp/bunya/kenkou/kenkou_eiyou_chousa.html (accessed August 2019).Google Scholar
Figure 0

Table 1 Greenhouse gas emissions (GHGE) of each food (kg-CO2 eq/kg) in foods included in Standard Tables of Food Composition in Japan

Figure 1

Table 2 Basic characteristics of 196 Japanese men and 196 women (aged 20–69 years)

Figure 2

Table 3 Diet-related greenhouse gas emissions (GHGE) (g-CO2-eq/d) and contribution of each food group to dietary-related GHGE in 196 Japanese men and 196 women (aged 20–69 years), estimated by literature-based and production- and consumption-based accounting IOT-applied methods

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